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Invasive Ductal Carcinoma (IDC) Nuclei Classification using Mask RCNN
Amany Ibrahim
,
Hanaa Torkey
, Ayman El-Sayed
Menoufia University
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Engineering
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Artificial Intelligence
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Convolutional Neural Network
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Scale Feature
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Multiscale
100%
Feature Extraction
100%
Survival Rate
100%
Early Detection
100%
Radiologist
100%
Region of Interest
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System Diagnostics
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Recognition Accuracy
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Interpretability
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Medicine and Dentistry
Breast Cancer
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Breast Carcinoma
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Malignant Neoplasm
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Histopathology
25%
Feature Extraction
25%
Survival Rate
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Image Analysis (Medical Imaging)
25%
Cancer Types
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Artificial Intelligence
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Chemical Engineering
Neural Network
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Pattern Recognition
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Biochemistry, Genetics and Molecular Biology
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